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Effects of soil data resolution on SWAT model stream flow and water quality predictions

机译:土壤数据分辨率对SWAT模型流和水质预测的影响

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The prediction accuracy of agricultural nonpoint source pollution models such as Soil and Water Assessment Tool (SWAT) depends on how well model input spatial parameters describe the characteristics of the watershed. The objective of this study was to assess the effects of different soil data resolutions on stream flow, sediment and nutrient predictions when used as input for SWAT. SWAT model predictions were compared for the two US Department of Agriculture soil databases with different resolution, namely the State Soil Geographic database (STATSGO) and the Soil Survey Geographic database (SSURGO). Same number of sub-basins was used in the watershed delineation. However, the number of HRUs generated when STATSGO and SSURGO soil data were used is 261 and 1301, respectively. SSURGO, with the highest spatial resolution, has 51 unique soil types in the watershed distributed in 1301 HRUs, while STATSGO has only three distributed in 261 HRUS. As a result of low resolution STATSGO assigns a single classification to areas that may have different soil types if SSURGO were used. SSURGO included Hydrologic Response Units (HRUs) with soil types that were generalized to one soil group in STATSGO. The difference in the number and size of HRUs also has an effect on sediment yield parameters (slope and slope length). Thus, as a result of the discrepancies in soil type and size of HRUs stream flow predicted was higher when SSURGO was used compared to STATSGO. SSURGO predicted less stream loading than STATSGO in terms of sediment and sediment-attached nutrients components, and vice versa for dissolved nutrients. When compared to mean daily measured flow, STATSGO performed better relative to SSURGO before calibration. SSURGO provided better results after calibration as evaluated by R~2 value (0.74 compared to 0.61 for STATSGO) and the Nash-Sutcliffe coefficient of Efficiency (NSE) values (0.70 and 0.61 for SSURGO and STATSGO, respectively) although both are in the same satisfactory range. Modelers need to weigh the benefits before selecting the type of data resolution they are going to use depending on the watershed size and level of accuracy required because more effort is required to prepare and calibrate the model when a fine resolution soil data is used.
机译:农业非点源污染模型(例如土壤和水评估工具(SWAT))的预测准确性取决于模型输入空间参数描述流域特征的能力。这项研究的目的是评估当用作SWAT输入时,不同土壤数据分辨率对溪流,沉积物和养分预测的影响。比较了美国农业部两个具有不同分辨率的土壤数据库的SWAT模型预测,即国家土壤地理数据库(STATSGO)和土壤调查地理数据库(SSURGO)。在分水岭划界中使用了相同数量的子流域。但是,使用STATSGO和SSURGO土壤数据时生成的HRU数分别为261和1301。 SSURGO具有最高的空间分辨率,在1301个HRU中分布的流域中有51种独特的土壤类型,而STATSGO在261个HRUS中仅分布了三种。由于分辨率低,如果使用SSURGO,STATSGO会对可能具有不同土壤类型的区域分配单一分类。 SSURGO包括土壤类型的水文响应单位(HRU),在STATSGO中将其概括为一个土壤组。 HRU的数量和大小的差异也会影响沉积物的产量参数(坡度和坡度)。因此,由于土壤类型和HRUs大小的差异,使用SSURGO预测的流量要比STATSGO高。 SSURGO预测的泥沙量和附着在泥沙中的养分成分比STATSGO少,反之亦然。与每日平均流量相比,STATSGO的性能优于校准前的SSURGO。通过R〜2值(STATSGO为0.61,而STATSGO为0.61)和Nash-Sutcliffe效率系数(NSE)值(SSURGO和STATSGO分别为0.70和0.61)评估,SSURGO提供了更好的结果,尽管两者都相同令人满意的范围。建模人员需要根据分水岭的大小和所需的精度水平,在选择要使用的数据分辨率类型之前权衡其优势,因为在使用高分辨率的土壤数据时,需要花费更多的精力来准备和校准模型。

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